• Title/Summary/Keyword: number of phoneme clusters

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The Effect of the Number of Phoneme Clusters on Speech Recognition (음성 인식에서 음소 클러스터 수의 효과)

  • Lee, Chang-Young
    • The Journal of the Korea institute of electronic communication sciences
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    • v.9 no.11
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    • pp.1221-1226
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    • 2014
  • In an effort to improve the efficiency of the speech recognition, we investigate the effect of the number of phoneme clusters. For this purpose, codebooks of varied number of phoneme clusters are prepared by modified k-means clustering algorithm. The subsequent processing is fuzzy vector quantization (FVQ) and hidden Markov model (HMM) for speech recognition test. The result shows that there are two distinct regimes. For large number of phoneme clusters, the recognition performance is roughly independent of it. For small number of phoneme clusters, however, the recognition error rate increases nonlinearly as it is decreased. From numerical calculation, it is found that this nonlinear regime might be modeled by a power law function. The result also shows that about 166 phoneme clusters would be the optimal number for recognition of 300 isolated words. This amounts to roughly 3 variations per phoneme.

Segmentation of continuous Korean Speech Based on Boundaries of Voiced and Unvoiced Sounds (유성음과 무성음의 경계를 이용한 연속 음성의 세그먼테이션)

  • Yu, Gang-Ju;Sin, Uk-Geun
    • The Transactions of the Korea Information Processing Society
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    • v.7 no.7
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    • pp.2246-2253
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    • 2000
  • In this paper, we show that one can enhance the performance of blind segmentation of phoneme boundaries by adopting the knowledge of Korean syllabic structure and the regions of voiced/unvoiced sounds. eh proposed method consists of three processes : the process to extract candidate phoneme boundaries, the process to detect boundaries of voiced/unvoiced sounds, and the process to select final phoneme boundaries. The candidate phoneme boudaries are extracted by clustering method based on similarity between two adjacent clusters. The employed similarity measure in this a process is the ratio of the probability density of adjacent clusters. To detect he boundaries of voiced/unvoiced sounds, we first compute the power density spectrum of speech signal in 0∼400 Hz frequency band. Then the points where this paper density spectrum variation is greater than the threshold are chosen as the boundaries of voiced/unvoiced sounds. The final phoneme boundaries consist of all the candidate phoneme boundaries in voiced region and limited number of candidate phoneme boundaries in unvoiced region. The experimental result showed about 40% decrease of insertion rate compared to the blind segmentation method we adopted.

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Performance of Korean spontaneous speech recognizers based on an extended phone set derived from acoustic data (음향 데이터로부터 얻은 확장된 음소 단위를 이용한 한국어 자유발화 음성인식기의 성능)

  • Bang, Jeong-Uk;Kim, Sang-Hun;Kwon, Oh-Wook
    • Phonetics and Speech Sciences
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    • v.11 no.3
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    • pp.39-47
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    • 2019
  • We propose a method to improve the performance of spontaneous speech recognizers by extending their phone set using speech data. In the proposed method, we first extract variable-length phoneme-level segments from broadcast speech signals, and convert them to fixed-length latent vectors using an long short-term memory (LSTM) classifier. We then cluster acoustically similar latent vectors and build a new phone set by choosing the number of clusters with the lowest Davies-Bouldin index. We also update the lexicon of the speech recognizer by choosing the pronunciation sequence of each word with the highest conditional probability. In order to analyze the acoustic characteristics of the new phone set, we visualize its spectral patterns and segment duration. Through speech recognition experiments using a larger training data set than our own previous work, we confirm that the new phone set yields better performance than the conventional phoneme-based and grapheme-based units in both spontaneous speech recognition and read speech recognition.